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Classification of Coral Reefs in the South China Sea by Combining Airborne LiDAR Bathymetry Bottom Waveforms and Bathymetric Features

机译:结合机载LiDAR测深波底波形和测深特征对南海珊瑚礁的分类

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Geographic information describing coral reefs plays an important role in constructing electronic chart systems and protecting the ecological environment of the ocean. To derive geographic information of coral reefs more effectively, this paper proposes a methodology to detect coral reefs by combining airborne LiDAR bathymetry (ALB) bottom waveform and bathymetric feature data. A feature vector was established by deriving bottom waveform variables (the peak amplitude, pulsewidth, area, skewness, kurtosis, and backscatter cross section) and bathymetric variables (the depth standard deviation, slope, bathymetric position index, Gaussian curvature, mean curvature, and roughness). Using a support vector machine classifier, coral reefs were detected by distinguishing two classes (coral reefs and others) on the seafloor. To evaluate the classification performance of coral reefs, the developed method was applied to Yuanzhi Island, South China Sea surveys, and verified by field data (aerial digital camera images and underwater video images). The results showed that the classification overall accuracy of coral reefs can be greatly improved from 80.59%/90.31% when ALB bottom waveform or bathymetric variables features were used separately to 93.57% when using a combination of ALB bottom waveform and bathymetric features. In addition, the kappa coefficient can also be greatly improved from approximately 0.61/0.80 to 0.87. And the new proposed method performs better compared to the current classification method using ALB data to detect coral reefs with an overall accuracy of 90.92% and Kappa of 0.81. This highlights the potential of ALB data, combining waveform data and bathymetric data, for precisely detecting coral reefs in shallow water areas.
机译:描述珊瑚礁的地理信息在构建电子海图系统和保护海洋生态环境中发挥着重要作用。为了更有效地获取珊瑚礁的地理信息,本文提出了一种结合机载LiDAR水深测量(ALB)底部波形和水深特征数据检测珊瑚礁的方法。通过导出底部波形变量(峰值幅度,脉冲宽度,面积,偏度,峰度和反向散射横截面)和测深变量(深度标准偏差,斜率,测深位置指数,高斯曲率,平均曲率和粗糙度)。使用支持向量机分类器,通过区分海底的两个类别(珊瑚礁和其他类别)来检测珊瑚礁。为了评估珊瑚礁的分类性能,将所开发的方法应用于南海元直岛调查,并通过现场数据(航空数码相机图像和水下视频图像)进行了验证。结果表明,将ALB底部波形或测深变量特征分开使用时,对珊瑚礁的分类总体准确度可以从80.59%/ 90.31%大大提高到93.77%。此外,卡伯系数也可以从大约0.61 / 0.80大大提高到0.87。与现有的使用ALB数据进行分类的方法相比,新提出的方法具有更好的性能,以90.92%的总准确度和0.81的Kappa探测珊瑚礁。这突出了结合波形数据和测深数据的ALB数据在精确检测浅水区珊瑚礁方面的潜力。

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